安全人机协作的自愿交互检测

Francesco Grella, A. Albini, G. Cannata
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引用次数: 0

摘要

本文提出了一种基于导纳控制的安全人机物理协作自适应算法。我们的方法采用触觉传感器作为物理通信通道,人类可以通过它向机器人表达自己的意图。使用分布式触觉传感器可以检索不可预测的接触事件的丰富几何表示,有助于重建外部环境的足迹。特别是,当一个人触摸或抓住覆盖有触觉传感器的表面时,可以检索人手的形状。我们使用手形检测来区分自愿和非自愿的互动,从而对人类故意与机器人接触或最终无意碰撞的情况进行分类。这种方法允许只有当操作员有意决定移动机器人时才启用机器人运动,从而避免意外碰撞时不可预测的行为。为此,检测信息用于导纳控制器的在线增益调谐,以便在手动制导应用中加强安全性。我们在Franka Emika 7自由度机械臂上验证了我们的方法,在可能发生自愿和非期望接触的情况下评估了算法,并将所提出的方法与基本导纳控制器进行了比较。通过实验,我们展示了自愿互动检测如何减轻与身体任何部位的意外碰撞的影响,并可能潜在地限制有害情况。以下链接提供了实验的综合视频:https://youtu.be/C0UeTFudy3M。
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Voluntary Interaction Detection for Safe Human-Robot Collaboration
In this paper we propose an adaptive algorithm for safe physical human-robot collaboration using admittance control. Our approach adopts tactile sensors as a physical communication channel through which a human can express its intention to the robot. The use of distributed tactile sensors allows to retrieve a rich geometric representation of unpredictable contact events, useful to reconstruct a footprint of the external environment. In particular the shape of a human hand can be retrieved whenever a person touches or grasps a surface covered with tactile sensors. We use hand shape detection to discriminate between voluntary and non-voluntary interaction, thus classifying situations in which the human is deliberately making contact with the robot or an eventual collision is unintended. This method allows to enable robot motion only when the operator intentionally decides to move it, thus avoiding unpredictable behaviors in case of accidental collisions. For this purpose, detection information is used to perform online gain tuning of an admittance controller in order to enforce safety in manual guidance applications. We validate our approach on a Franka Emika 7-dof manipulator, evaluating the algorithm in scenarios where both voluntary and undesired contacts can occur, comparing the proposed method with respect to a basic admittance controller. Through experiments we show how voluntary interaction detection can mitigate the effects of undesired collisions with any of the body parts and could potentially limit harmful situations. A comprehensive video of the experiments is available at the following link: https://youtu.be/C0UeTFudy3M.
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